基于经验模态分解的模糊c均值聚类方法

Yanfei Wang, Zuguo Yu, V. Anh
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引用次数: 15

摘要

微阵列技术使同时监测数千个基因的表达成为可能,从而使基因组研究发生了革命性的变化。数据聚类分析已广泛应用于从DNA微阵列获得的基因表达谱中提取信息。现有的聚类方法,主要是在计算机科学中发展起来的,已经适应了微阵列数据。其中,模糊c均值(FCM)方法是一种有效的方法。然而,微阵列数据中存在噪声,噪声会影响聚类结果。从随机数据中仍然可以发现一些没有任何生物学意义的聚类结构。在本文中,我们提出将FCM方法与经验模态分解(EMD)相结合用于微阵列数据聚类,以降低噪声的影响。我们称这种方法为经验模态分解模糊c均值方法(FCM-EMD)。利用FCM- emd方法对基因微阵列数据进行分析,得到了比仅使用FCM方法更好的结果。结果表明,去噪后的数据聚类结构更加合理,基因与聚类的关联更加紧密。不含任何生物信息的去噪基因数据不包含聚类结构。通过分析去噪后的微阵列数据,可以在一定程度上避免模糊参数m的估计。这使得集群更加高效。采用FCM-EMD方法分析基因微阵列数据可以节省时间,得到更合理的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy C-means method with empirical mode decomposition for clustering microarray data
Microarray techniques have revolutionized genomic research by making it possible to monitor the expression of thousands of genes in parallel. Data clustering analysis has been extensively applied to extract information from gene expression profiles obtained with DNA microarrays. Existing clustering approaches, mainly developed in computer science, have been adapted to microarray data. Among these approaches, fuzzy C-means (FCM) method is an efficient one. However, microarray data contains noise and the noise would affect clustering results. Some clustering structure still can be found from random data without any biological significance. In this paper, we propose to combine the FCM method with the empirical mode decomposition (EMD) for clustering microarray data in order to reduce the effect of the noise. We call this method fuzzy C-means method with empirical mode decomposition (FCM-EMD). Using the FCM-EMD method on gene microarray data, we obtained better results than those using FCM only. The results suggest the clustering structures of denoised data are more reasonable and genes have tighter association with their clusters. Denoised gene data without any biological information contains no cluster structure. We find that we can avoid estimating the fuzzy parameter m in some degree by analyzing denoised microarray data. This makes clustering more efficient. Using the FCM-EMD method to analyze gene microarray data can save time and obtain more reasonable results.
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